This is a reimplemented and retrained version of the tiny YOLO v2 object detection network trained with the VOC2012 training dataset.
Metric | Value |
---|---|
Mean Average Precision (mAP) | 35.37% |
Flops | 6.97Bn* |
Source framework | TensorFlow* |
For Average Precision metric description, see The PASCAL Visual Object Classes (VOC) Challenge. Tested on the VOC 2012 validation dataset.
Name: input
, shape: [1x3x416x416] - An input image in the format [BxCxHxW],
where:
- B - batch size
- C - number of channels
- H - image height
- W - image width Expected color order is BGR.
The net outputs a blob with the shape [1, 21125], which can be reshaped to [5, 25, 13, 13],
where each number corresponds to [num_anchors
, cls_reg_obj_params
, y_loc
, x_loc
] respectively:
num_anchors
: number of anchor boxes, each spatial location specified byy_loc
andx_loc
has five anchorscls_reg_obj_params
: parameters for classification and regression. The values are made up of the following:- Regression parameters (4)
- Objectness score (1)
- Class score (20)
y_loc
andx_loc
: spatial location of each grid
[*] Same as the original implementation.
[**] Other names and brands may be claimed as the property of others.